Weaving multiple digital threads
As we’ve outlined previously, data sits at the heart of all of these shifts. Automotive businesses, just like organisations in every other sector, must quickly evolve to become truly data-centric. Establishing, nurturing and pulling on the digital threads that connect data from customers right through to product innovation linking every aspect of the lifecycle of a vehicle will be critical. The complexity of the challenges, plus the demand for data at unprecedented speed and scale means that the automotive company of the future will need to weave multiple digital threads into a consistent and coherent digital fabric that connects an entire ecosystem.Many automotive OEMs, and tier one suppliers, have already created ‘Islands of Excellence’ where digital threads connect key processes and ensure data flows back and forth to add value. For example, several Teradata customers are using data and machine learning to rapidly identify quality problems in the factory and in the fleet. Automation of root-cause analysis further improves quality processes. Others are using connected car data and situational analytics to drive tailored messages to drivers, and several are using marketing analytics to identify high value customers and reduce churn. The next step is to connect these islands into contiguous continents of data. It is a long journey to reach this land, but every step in creating a digital fabric will have immediate value add.

Answering questions not yet asked
A key benefit of beginning to weave this digital fabric has been keenly demonstrated by the disruptions of the past couple of years. Siloed, proof-of-concept approaches to analytics can deliver some value, but time and again businesses find they need answers to new questions. Models and approaches specified to answer the previous set of questions are always falling behind as new unexpected ones emerge. The digital fabric takes a different approach by seeking to connect all data and prepare it to be combined however needed to solve as yet unforeseen problems and deliver unimagined insights. Volkswagen has taken bold steps as a leader in creating a digital platform for production. Working with AWS it has implemented the Digital Production Platform to combine data from all machines, plants and systems from all its facilities to create and support an industrial ecosystem of internal and external innovation to improve manufacturing processes. Teradata is part of this initiative to create a digital fabric and provides one of the first live cloud-based analytics providing 100% process monitoring for continuous improvement.Three Prerequisites
Working to create this digital fabric we’ve identified three essential prerequisites for automotive businesses. The first is granular data. In marketing terms, we talk about the segment of one – tailoring offers to the exact need of every individual customer. In automotive terms it means tracking, tracing, predicting and mitigating down to every individual part number for inbound logistics. It means managing manufacturing and outbound logistics at individual VIN number level. Data needs not only to be collected from individual vehicles, owners and drivers throughout the lifecycle of the product, but in a usable format that can be analyses to drive value at every point.The second prerequisite is to shift from a mindset that sees data as an output, or even by-product of a process, useful for reporting, to an understanding of data as input and output that drives predictive models. Deploying data to automate, de-risk and prevent issues, as well as to provide insights into new opportunities, reduces costs and increases value. Using data to understand why something went wrong is powerful – using it to predict and avoid problems from occurring is transformational.
Finally, automotive companies must lay the groundwork for the massive scale and speed of data needed to thrive in the future. Here’s why. An average vehicle might have 20,000 parts, each of which can be subject to many events (i.e. raw materials used, time and place of manufacture, shipment details etc.), all of which create data - let’s say 100 data points before main assembly. That’s already 2 million events per vehicle. Multiply that by the number of vehicles manufactured by each factory each year and suddenly there are hundreds of millions of events to capture! As the business model changes, and OEMs continue to capture and use data from fleets in use for the lifetime of the vehicle and the numbers increase by at least another magnitude.